论文标题

水基础设施监控的可扩展且可靠的数据分析平台

A Scalable and Dependable Data Analytics Platform for Water Infrastructure Monitoring

论文作者

Lorenz, Felix, Geldenhuys, Morgan, Sommer, Harald, Jakobs, Frauke, Lüring, Carsten, Skwarek, Volker, Behnke, Ilja, Thamsen, Lauritz

论文摘要

在较长的干燥时期和更严重的降雨事件方面,天气变得越来越极端,市政水网络越来越承受压力。效果包括对管道的损失,街道上的山洪泛滥以及下水道溢出。改造地下基础设施非常昂贵,因此水基础设施运营商越来越希望部署物联网解决方案,这些解决方案有望减轻成本的一小部分。在本文中,我们报告了正在进行的联合研究项目的初步结果,特别是有关其数据分析平台的设计和评估。总体系统由节能传感器节点组成,这些传感器节点将其观察结果发送到流处理引擎,该节点分析和丰富了数据并将结果传输到基于GIS的前端。由于所提出的解决方案旨在监视城市的大型和关键的基础设施,因此将几种非功能性要求(例如可扩展性,响应能力和可靠性)纳入了系统体系结构。我们提出了一个可扩展的流处理平台及其与其他组件的集成以及用于数据处理的算法。我们讨论重大挑战和设计决策,介绍有效的数据丰富程序,并提出经验结果,以验证符合目标要求。本文公开提供了用于部署我们的平台和运行数据丰富作业的整个代码。

With weather becoming more extreme both in terms of longer dry periods and more severe rain events, municipal water networks are increasingly under pressure. The effects include damages to the pipes, flash floods on the streets and combined sewer overflows. Retrofitting underground infrastructure is very expensive, thus water infrastructure operators are increasingly looking to deploy IoT solutions that promise to alleviate the problems at a fraction of the cost. In this paper, we report on preliminary results from an ongoing joint research project, specifically on the design and evaluation of its data analytics platform. The overall system consists of energy-efficient sensor nodes that send their observations to a stream processing engine, which analyzes and enriches the data and transmits the results to a GIS-based frontend. As the proposed solution is designed to monitor large and critical infrastructures of cities, several non-functional requirements such as scalability, responsiveness and dependability are factored into the system architecture. We present a scalable stream processing platform and its integration with the other components, as well as the algorithms used for data processing. We discuss significant challenges and design decisions, introduce an efficient data enrichment procedure and present empirical results to validate the compliance with the target requirements. The entire code for deploying our platform and running the data enrichment jobs is made publicly available with this paper.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源